1. Ebrahimie, E., Ebrahimi, F., Ebrahimi, M., Tomlinson, S., Petrovski, K.: A large-scale study of indicators of sub-clinical mastitis in dairy cattle by attribute weighting analysis of milk composition features: highlighting the predictive power of lactose and electrical conductivity. J Dairy Res 85, 193–200 (2018)
2. Ebrahimi, M., Mohammadi-Dehcheshmeh, M., Ebrahimie E., Petrovski, K.: Comprehensive analysis of machine learning models for prediction of sub-clinical mastitis: Deep Learning and Gradient-Boosted Trees outperform other models. Comput. Biol. Med. 114, 103456 (2019)
3. Tremblay, M., Hess, J., Christenson, B., McIntyre, K., Smink, B., van der Kamp, A., de Jong, L., Dopfer, D.: Customized recommendations for production management clusters of North American automatic milking systems. J. Dairy Sci. 99(7), 5671–5680 (2016)
4. Keeper, D., Kerrisk, K., House, J., Garcia, S., Thomson, P.: Demographics, farm and reproductive management strategies used in Australian automatic milking systems compared with regionally proximal conventional milking systems. Aust. Vet. J. 95(9), 325–332 (2017)
5. Surovtsev, V., Bilkov, V., Nikulina, Y.: Innovative development of dairy farming in the North-West of the Russian Federation as the basis of improving the competitiveness of milk production. Econ. Soc. Changes-Facts Trends Forecast 28(4), 143–150 (2013)